utils::globalVariables(c("item", "freq", "year_q1", "year_med", "year_q3"))
#' Field Tag distribution by Year
#'
#' It calculates the median year for each item of a field tag.
#' @param M is a bibliographic data frame obtained by \code{\link{convert2df}} function.
#' @param field is a character object. It indicates one of the field tags of the
#'   standard ISI WoS Field Tag codify.
#' @param timespan is a vector with the min and max year. If it is = NULL, the analysis is performed on the entire period. Default is \code{timespan = NULL}.
#' @param min.freq is an integer. It indicates the min frequency of the items to include in the analysis
#' @param n.items is an integer. I indicates the maximum number of items per year to include in the plot.
#' @param labelsize is deprecated argument. It will be removed in the next update.
#' @param remove.terms is a character vector. It contains a list of additional terms to delete from the documents before term extraction. The default is \code{remove.terms = NULL}.
#' @param synonyms is a character vector. Each element contains a list of synonyms, separated by ";",  that will be merged into a single term (the first word contained in the vector element). The default is \code{synonyms = NULL}.
#' @param dynamic.plot is a logical. If TRUE plot aesthetics are optimized for plotly package.
#' @param graph is logical. If TRUE the function plots Filed Tag distribution by Year graph. Default is \code{graph = TRUE}.
#' @return The function \code{fieldByYear} returns a list containing threeobjects:
#' \tabular{lll}{
#' \code{df}  \tab   \tab is a data frame\cr
#' \code{df_graph}\tab    \tab is a data frame with data used to build the graph\cr
#' \code{graph}   \tab   \tab a ggplot object}
#'
#' @examples
#' data(management, package = "bibliometrixData")
#' timespan <- c(2005, 2015)
#' res <- fieldByYear(management,
#'   field = "ID", timespan = timespan,
#'   min.freq = 5, n.items = 5, graph = TRUE
#' )

#'
#' @seealso \code{\link{biblioAnalysis}} function for bibliometric analysis
#' @seealso \code{\link{summary}} method for class '\code{bibliometrix}'
#'
#' @export
#'

fieldByYear <- function(M,
                        field = "ID",
                        timespan = NULL,
                        min.freq = 2,
                        n.items = 5,
                        labelsize = NULL,
                        remove.terms = NULL,
                        synonyms = NULL,
                        dynamic.plot = FALSE,
                        graph = TRUE) {
  A <- cocMatrix(M, Field = field, binary = FALSE, remove.terms = remove.terms, synonyms = synonyms)
  n <- colSums(as.array(A))

  # A=tdIdf(A)


  trend_med <- apply(A, 2, function(x) {
    round(quantile(rep(M$PY, x), c(0.25, 0.50, 0.75), na.rm = TRUE))
  })

  trend_med <- as_tibble(t(trend_med)) %>%
    rename("year_q1" = "25%", "year_med" = "50%", "year_q3" = "75%") %>%
    mutate(item = rownames(t(trend_med)), freq = n) %>%
    relocate(c(item, freq), year_q1)

  # if timespan is null, timespan is set to the whole period
  if (is.null(timespan) | length(timespan) != 2) {
    timespan <- as.numeric(range(trend_med$year_med, na.rm = TRUE))
  }

  df <- trend_med %>%
    mutate(item = tolower(item)) %>%
    group_by(year_med) %>%
    arrange(desc(freq), item) %>%
    arrange(desc(year_med)) %>%
    dplyr::slice_head(n = n.items) %>%
    dplyr::filter(freq >= min.freq) %>%
    dplyr::filter(between(year_med, timespan[1], timespan[2])) %>%
    mutate(item = fct_reorder(item, freq))

  data("logo", envir = environment())
  logo <- grid::rasterGrob(logo, interpolate = TRUE)

  yrange <- range(unlist(df[, which(regexpr("year", names(df)) > -1)]))

  x <- c(0 + 0.5, 0.05 + length(levels(df$item)) * 0.125) + 1
  y <- c(yrange[2] - 0.02 - diff(yrange) * 0.125, yrange[2] - 0.02)

  g <- ggplot(df, aes(
    x = item, y = year_med,
    text = paste(
      "Term: ", item, "\nYear: ",
      year_med, "\nTerm frequency: ", freq
    )
  )) +
    geom_point(aes(size = freq), alpha = 0.6, color = "dodgerblue4") +
    scale_size(range = c(2, 6)) +
    # scale_alpha(range=c(0.3,1))+
    scale_y_continuous(breaks = seq(min(df$year_q1), max(df$year_q3), by = 2)) +
    guides(size = guide_legend(order = 1, "Term frequency"), alpha = guide_legend(order = 2, "Term frequency")) +
    theme(
      legend.position = "right"
      # ,aspect.ratio = 1
      , text = element_text(color = "#444444"),
      panel.background = element_rect(fill = "#FFFFFF"),
      panel.grid.major.x = element_blank(),
      panel.grid.major.y = element_line(color = "grey95"),
      plot.title = element_text(size = 24),
      axis.title = element_text(size = 14, color = "#555555"),
      axis.title.y = element_text(vjust = 1, angle = 90, face = "bold"),
      axis.title.x = element_text(hjust = .95),
      axis.text.x = element_text(face = "bold", angle = 90) # , size=labelsize)
      , axis.text.y = element_text(face = "bold", ),
      axis.line.x = element_line(color = "black", linewidth = 0.5)
    ) +
    annotation_custom(logo, xmin = x[1], xmax = x[2], ymin = y[1], ymax = y[2])

  if (!isTRUE(dynamic.plot)) {
    g <- g + geom_vline(xintercept = nrow(df) - (which(c(diff(df$year_med)) == -1) - 0.5), color = "grey70", alpha = 0.6, linetype = 6) +
      geom_point(aes(y = year_q1), alpha = 0.6, size = 3, color = "royalblue4", shape = "|") +
      geom_point(aes(y = year_q3), alpha = 0.6, size = 3, color = "royalblue4", shape = "|")
  }

  g <- g +
    labs(
      title = "Trend Topics",
      x = "Term",
      y = "Year"
    ) +
    geom_segment(data = df, aes(x = item, y = year_q1, xend = item, yend = year_q3), size = 1.0, color = "royalblue4", alpha = 0.3) +
    coord_flip()

  if (isTRUE(graph)) {
    print(g)
  }



  results <- list(df = trend_med, df_graph = df, graph = g)

  return(results)
}
